Deep Reinforcement Learning for Backup Strategies against Adversaries

02/12/2021
by   Pascal Debus, et al.
8

Many defensive measures in cyber security are still dominated by heuristics, catalogs of standard procedures, and best practices. Considering the case of data backup strategies, we aim towards mathematically modeling the underlying threat models and decision problems. By formulating backup strategies in the language of stochastic processes, we can translate the challenge of finding optimal defenses into a reinforcement learning problem. This enables us to train autonomous agents that learn to optimally support planning of defense processes. In particular, we tackle the problem of finding an optimal backup scheme in the following adversarial setting: Given k backup devices, the goal is to defend against an attacker who can infect data at one time but chooses to destroy or encrypt it at a later time, potentially also corrupting multiple backups made in between. In this setting, the usual round-robin scheme, which always replaces the oldest backup, is no longer optimal with respect to avoidable exposure. Thus, to find a defense strategy, we model the problem as a hybrid discrete-continuous action space Markov decision process and subsequently solve it using deep deterministic policy gradients. We show that the proposed algorithm can find storage device update schemes which match or exceed existing schemes with respect to various exposure metrics.

READ FULL TEXT
research
11/27/2019

Deep Reinforcement Learning based Adaptive Moving Target Defense

Moving target defense (MTD) is a proactive defense approach that aims to...
research
07/12/2020

Adversarial jamming attacks and defense strategies via adaptive deep reinforcement learning

As the applications of deep reinforcement learning (DRL) in wireless com...
research
12/06/2021

Lecture Notes on Partially Known MDPs

In these notes we will tackle the problem of finding optimal policies fo...
research
07/12/2022

Markov Decision Process For Automatic Cyber Defense

It is challenging for a security analyst to detect or defend against cyb...
research
02/14/2019

Active Perception in Adversarial Scenarios using Maximum Entropy Deep Reinforcement Learning

We pose an active perception problem where an autonomous agent actively ...
research
02/03/2023

Deep Reinforcement Learning for Cyber System Defense under Dynamic Adversarial Uncertainties

Development of autonomous cyber system defense strategies and action rec...
research
05/09/2020

Multi-Party Campaigning

We study a social choice setting of manipulation in elections and extend...

Please sign up or login with your details

Forgot password? Click here to reset